Wordle data mining based on deep learning

Jianjie Song, Fangyuan Zhu, Zirong Zhang
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Abstract

In just a few months, Wordle has grown from a few players to several million users after "viral spread" by major social platforms. To study the secret of Wordle game success We construct a time-series based model by building a QL-LSTM model to explain the daily variation in the number of reported results and try to predict the game reports on March 1, 2023, which has a prediction interval of [21127, 24093], while we construct features for vowel and consonant digits, wordiness, number of letter repetitions, and word frequency. and assessed the relevance and significance of the percentage of those reporting being in hard mode. Only word frequency and percentage in hard mode had a slightly negative and significant relationship. The mystery of Wordle is unveiled by the above exploration.
基于深度学习的世界数据挖掘
在几个月的时间里,通过主要社交平台的“病毒式传播”,《world》已经从几个玩家发展到数百万用户。为了研究世界游戏成功的秘诀,我们构建了一个基于时间序列的模型,通过构建一个QL-LSTM模型来解释报告结果数量的每日变化,并尝试预测2023年3月1日的游戏报告,预测区间为[21127,24093],同时我们构建了元音和辅音数字、冗长性、字母重复次数和词频的特征。并评估了那些报告处于困难模式的百分比的相关性和重要性。在困难模式下,只有词频和百分比呈显著负相关。通过以上的探索,揭开了世界的奥秘。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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